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1.
Diagnostics (Basel) ; 12(4)2022 Apr 07.
Article in English | MEDLINE | ID: mdl-35453965

ABSTRACT

Artificial intelligence-assisted otologic diagnosis has been of growing interest in the scientific community, where middle and external ear disorders are the most frequent diseases in daily ENT practice. There are some efforts focused on reducing medical errors and enhancing physician capabilities using conventional artificial vision systems. However, approaches with multispectral analysis have not yet been addressed. Tissues of the tympanic membrane possess optical properties that define their characteristics in specific light spectra. This work explores color wavelengths dependence in a model that classifies four middle and external ear conditions: normal, chronic otitis media, otitis media with effusion, and earwax plug. The model is constructed under a computer-aided diagnosis system that uses a convolutional neural network architecture. We trained several models using different single-channel images by taking each color wavelength separately. The results showed that a single green channel model achieves the best overall performance in terms of accuracy (92%), sensitivity (85%), specificity (95%), precision (86%), and F1-score (85%). Our findings can be a suitable alternative for artificial intelligence diagnosis systems compared to the 50% of overall misdiagnosis of a non-specialist physician.

2.
World J Gastroenterol ; 27(38): 6399-6414, 2021 Oct 14.
Article in English | MEDLINE | ID: mdl-34720530

ABSTRACT

Colorectal cancer (CRC) was the second-ranked worldwide type of cancer during 2020 due to the crude mortality rate of 12.0 per 100000 inhabitants. It can be prevented if glandular tissue (adenomatous polyps) is detected early. Colonoscopy has been strongly recommended as a screening test for both early cancer and adenomatous polyps. However, it has some limitations that include the high polyp miss rate for smaller (< 10 mm) or flat polyps, which are easily missed during visual inspection. Due to the rapid advancement of technology, artificial intelligence (AI) has been a thriving area in different fields, including medicine. Particularly, in gastroenterology AI software has been included in computer-aided systems for diagnosis and to improve the assertiveness of automatic polyp detection and its classification as a preventive method for CRC. This article provides an overview of recent research focusing on AI tools and their applications in the early detection of CRC and adenomatous polyps, as well as an insightful analysis of the main advantages and misconceptions in the field.


Subject(s)
Colonic Polyps , Colorectal Neoplasms , Artificial Intelligence , Colonic Polyps/diagnosis , Colonoscopy , Colorectal Neoplasms/diagnosis , Early Detection of Cancer , Humans
3.
PLoS One ; 15(3): e0229226, 2020.
Article in English | MEDLINE | ID: mdl-32163427

ABSTRACT

In medicine, a misdiagnosis or the absence of specialists can affect the patient's health, leading to unnecessary tests and increasing the costs of healthcare. In particular, the lack of specialists in otolaryngology in third world countries forces patients to seek medical attention from general practitioners, whom might not have enough training and experience for making correct diagnosis in this field. To tackle this problem, we propose and test a computer-aided system based on machine learning models and image processing techniques for otoscopic examination, as a support for a more accurate diagnosis of ear conditions at primary care before specialist referral; in particular, for myringosclerosis, earwax plug, and chronic otitis media. To characterize the tympanic membrane and ear canal for each condition, we implemented three different feature extraction methods: color coherence vector, discrete cosine transform, and filter bank. We also considered three machine learning algorithms: support vector machine (SVM), k-nearest neighbor (k-NN) and decision trees to develop the ear condition predictor model. To conduct the research, our database included 160 images as testing set and 720 images as training and validation sets of 180 patients. We repeatedly trained the learning models using the training dataset and evaluated them using the validation dataset to thus obtain the best feature extraction method and learning model that produce the highest validation accuracy. The results showed that the SVM and k-NN presented the best performance followed by decision trees model. Finally, we performed a classification stage -i.e., diagnosis- using testing data, where the SVM model achieved an average classification accuracy of 93.9%, average sensitivity of 87.8%, average specificity of 95.9%, and average positive predictive value of 87.7%. The results show that this system might be used for general practitioners as a reference to make better decisions in the ear pathologies diagnosis.


Subject(s)
Ear Diseases/diagnostic imaging , Image Interpretation, Computer-Assisted/methods , Adolescent , Adult , Cerumen/diagnostic imaging , Child , Decision Trees , Diagnosis, Computer-Assisted/methods , Early Diagnosis , Humans , Male , Middle Aged , Myringosclerosis/diagnostic imaging , Otitis Media/diagnostic imaging , Sensitivity and Specificity , Support Vector Machine , Young Adult
4.
Annu Int Conf IEEE Eng Med Biol Soc ; 2019: 961-965, 2019 Jul.
Article in English | MEDLINE | ID: mdl-31946053

ABSTRACT

The continuous growing of machine learning techniques, their capabilities improvements and the availability of data being continuously collected, recorded and updated, can enhance diagnosis stages by making it faster and more accurate than human diagnosis. In lower endoscopies procedures, most of the diagnosis relies on the capabilities and expertise of the physician. During medical training, physicians can be benefited from the assistance of algorithms able to automatically detect polyps, thus enhancing their diagnosis. In this paper, we propose a machine learning approach trained to detect polyps in lower endoscopies recordings with high accuracy and sensitivity, previously processed using wavelet transform for feature extraction. The propose system is validated using available datasets. From a set of 1132 images, our system showed a 97.9% of accuracy in diagnosing polyps, around 10% more efficient than other approaches using techniques with a low computational requirement previously published. In addition, the false positive rate was 0.03. This encouraging result can be also extended to other diagnosis.


Subject(s)
Colonic Polyps , Machine Learning , Algorithms , Humans , Reproducibility of Results
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